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Birth Registration and Child Undernutrition in Sub-Saharan Africa

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Date 2015 Dec 17
PMID 26669828
Citations 12
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Abstract

Objective: In many countries of the world millions of people are not registered at birth. However, in order to assess children's nutritional status it is necessary to have an exact knowledge of their age. In the present paper we discuss the effects of insufficient or imprecise age data on estimates of undernutrition prevalence.

Design: Birth registration rates and levels of stunting, underweight and wasting were retrieved from Multiple Indicator Cluster Surveys and Demographic and Health Surveys of thirty-seven sub-Saharan African countries, considering the subdivision in wealth quintiles. The composition of the cross-sectional sample used for nutritional evaluation was analysed using a permutation test. Logistic regression was applied to analyse the relationship between birth registration and undernutrition. The 95 % probability intervals and Student's t test were used to evaluate the effect of age bias and error.

Results: Heterogeneous sampling designs were detected among countries, with different percentages of children selected for anthropometry. Further, registered children were slightly more represented within samples used for nutritional analysis than in the total sample. A negative relationship between birth registration and undernutrition was recognized, with registered children showing a better nutritional status than unregistered ones, even within each wealth quintile. The over- or underestimation of undernutrition in the case of systematic over- or underestimation of age, respectively, the latter being more probable, was quantified up to 28 %. Age imprecision was shown to slightly overestimate undernutrition.

Conclusions: Selection bias towards registered children and underestimation of children's age can lead to an underestimation of the prevalence of undernutrition.

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References
1.
Hamill P, Drizd T, Johnson C, Reed R, Roche A, MOORE W . Physical growth: National Center for Health Statistics percentiles. Am J Clin Nutr. 1979; 32(3):607-29. DOI: 10.1093/ajcn/32.3.607. View

2.
Lawson D, Borgerhoff Mulder M, Ghiselli M, Ngadaya E, Ngowi B, Mfinanga S . Ethnicity and child health in northern Tanzania: Maasai pastoralists are disadvantaged compared to neighbouring ethnic groups. PLoS One. 2014; 9(10):e110447. PMC: 4212918. DOI: 10.1371/journal.pone.0110447. View

3.
Bairagi R . Effects of bias and random error in anthropometry and in age on estimation of malnutrition. Am J Epidemiol. 1986; 123(1):185-91. DOI: 10.1093/oxfordjournals.aje.a114213. View

4.
Beiersmann C, Bermejo Lorenzo J, Bountogo M, Tiendrebeogo J, Gabrysch S, Ye M . Malnutrition determinants in young children from Burkina Faso. J Trop Pediatr. 2013; 59(5):372-9. DOI: 10.1093/tropej/fmt037. View

5.
Oshaug A, Pedersen J, Diarra M, Bendech M, Hatloy A . Problems and pitfalls in the use of estimated age in anthropometric measurements of children from 6 to 60 months of age: a case from Mali. J Nutr. 1994; 124(5):636-44. DOI: 10.1093/jn/124.5.636. View